Forecast the net profit revenue for each customer by predicting their lifetime value.
CLV/LTV predictions and ordered customer groupings based on forecasted value
Ordered customer groupings based on predicted churn
Understand key predictors for CLV/LTV value
Overview of proportional hazards modeling and discrete-time logistic hazard models
This describes how far ahead in the future this model can be trained to predict. Ideally, the historical data available for training would be 2-3 times longer than the prediction window.
Identify high-value customers and provide them a red-carpet experience.
Maintain ongoing high-value customer focus.
A typical modeling engagement with GlorifAI lasts 3-4 weeks once we get access to the data and proceeds in three distinct phases.
Forecast the net profit revenue for each customer by predicting their lifetime value. This model is designed to facilitate targeted, personalized treatment of high-value customers.
CLV modeling approaches include proportional hazards modeling and discrete-time logistic hazard models. For proportional hazards modeling a churn model is built first using range of algorithms for the best AUC/outcome like XGBoost/GBM, Neural Network, SVM, KNN, etc. LLMs and NLP techniques may also be used to enhance model performance.
At GlorifAI, we prioritize your data privacy by working exclusively on-prem. Our consultants operate either on hardware you provide, such as company laptops, or within virtual machines that you provision in the cloud—ensuring that your data remains entirely within your ecosystem.
We do not egress, transfer, or copy your data to our private company servers or third-parties, so you can trust that your sensitive information stays secure and under your control at all times.
We will contact you within 2 business days to setup a meeting and set the engagement date. Instructions for the required data set will be provided at this time.
The first model payment is invoiced at the data access date. Model delivery usually occurs 3-4 weeks from the data access date. The final model payment is invoiced at the model delivery date.
Deposit fully refundable before engagement date.
If we cannot detect a pattern for a stable model, the final model invoice will be waived and we will provide you with data assessments, findings, insights and further recommendations.